• Title of article

    Gaussian Quadrature is an efficient method for the back-transformation in estimating the usual intake distribution when assessing dietary exposure

  • Author/Authors

    Dekkers، نويسنده , , A.L.M. and Slob، نويسنده , , W.، نويسنده ,

  • Issue Information
    روزنامه با شماره پیاپی سال 2012
  • Pages
    9
  • From page
    3853
  • To page
    3861
  • Abstract
    In dietary exposure assessment, statistical methods exist for estimating the usual intake distribution from daily intake data. These methods transform the dietary intake data to normal observations, eliminate the within-person variance, and then back-transform the data to the original scale. We propose Gaussian Quadrature (GQ), a numerical integration method, as an efficient way of back-transformation. We compare GQ with six published methods. One method uses a log-transformation, while the other methods, including GQ, use a Box-Cox transformation. This study shows that, for various parameter choices, the methods with a Box-Cox transformation estimate the theoretical usual intake distributions quite well, although one method, a Taylor approximation, is less accurate. Two applications – on folate intake and fruit consumption – confirmed these results. In one extreme case, some methods, including GQ, could not be applied for low percentiles. We solved this problem by modifying GQ. One method is based on the assumption that the daily intakes are log-normally distributed. Even if this condition is not fulfilled, the log-transformation performs well as long as the within-individual variance is small compared to the mean. We conclude that the modified GQ is an efficient, fast and accurate method for estimating the usual intake distribution.
  • Keywords
    Gaussian quadrature , Nonlinear mixed models , Usual intake distribution , Dietary surveys , Back-transformation , Box-Cox transformation
  • Journal title
    Food and Chemical Toxicology
  • Serial Year
    2012
  • Journal title
    Food and Chemical Toxicology
  • Record number

    2124130